{
  "cells": [
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "rX8mhOLljYeM"
      },
      "source": [
        "---\n",
        "\n",
        "title: ipynb 文件测试\n",
        "keywords: teedoc, 部署\n",
        "tags: teedoc, 文档生成, jupyter notebook, ipynb\n",
        "desc: teedoc 生成的网站部署到服务器\n",
        "author: neucrack\n",
        "update:\n",
        "  - date: 2022-09-15\n",
        "    version: 1.2.0\n",
        "    author: xxx\n",
        "    content:\n",
        "      - 修复了错误BBB\n",
        "      - 优化了内容CCC，参考<a>aaa</a>\n",
        "  - date: 2022-09-08\n",
        "    version: 1.1.0\n",
        "    author: UUU\n",
        "    content: 修复了错误AAA\n",
        "---"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "3wF5wszaj97Y"
      },
      "source": [
        "## 初学者的 TensorFlow 2.0 教程\n",
        "\n",
        "###  三级标题\n",
        "\n",
        "#### 四级标题"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {},
      "source": [
        "### 三级标题2\n",
        "\n",
        "#### 四级标题2"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {},
      "source": [
        "## Title2\n",
        "\n",
        "### 标题2.1"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 3,
      "metadata": {},
      "outputs": [
        {
          "name": "stdout",
          "output_type": "stream",
          "text": [
            "hello\n"
          ]
        }
      ],
      "source": [
        "print(\"hello\")"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {},
      "source": [
        "### 标题2.2"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {},
      "source": [
        "## 链接\n",
        "\n",
        "[相对路径， README.md 文件](../README.md): `../README.md`， 会自动转换成`index.html`\n",
        "\n",
        "[相对路径， md 文件](./syntax_markdown.md)： `./syntax_markdown.md`， 会转成文档的 `.html` 结尾的链接\n",
        "\n",
        "[绝对路径， http 文件](https://storage.googleapis.com/tensorflow_docs/docs-l10n/site/zh-cn/tutorials/quickstart/beginner.ipynb)： `https://。。。/beginner.ipynb`，原链接，不会修改\n",
        "\n",
        "[相对路径， ipynb 文件](./syntax_notebook.ipynb)： `./syntax_notebook.ipynb`， 会转成文档的 `.html` 结尾的链接\n",
        "\n",
        "## 图片\n",
        "\n",
        "![](../assets/images/teedoc_logo.png)\n"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 1,
      "metadata": {},
      "outputs": [
        {
          "name": "stdout",
          "output_type": "stream",
          "text": [
            "hello\n"
          ]
        }
      ],
      "source": [
        "print(\"hello\")"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 3,
      "metadata": {},
      "outputs": [
        {
          "name": "stdout",
          "output_type": "stream",
          "text": [
            "world\n",
            "world\n"
          ]
        }
      ],
      "source": [
        "print(\"world\\nworld\")"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 7,
      "metadata": {},
      "outputs": [
        {
          "name": "stdout",
          "output_type": "stream",
          "text": [
            "image\n"
          ]
        },
        {
          "data": {
            "image/png": 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Xt7X6WsTet1DrYSMZlvN2jtq3IXHKnnuhnnjAnqgJzfJ9mL1OlqFH5t6z52ijr54peRZpOnjQ2ROkohrV/D6ZBMFO/QS0fJbQCuZABI6MyEj9HoARASdkdhJkEjgGzIzGt5ip+r8/OwxOqFk7R6OZZYtqp0EIAOg4Fc0FZZTEniMiOJYO4iEd0lQ8UCL8ejwH1ULO6OguZgOsA0lnFg2B0HGHw/YIPPM4bCbYnI5xebKDw/oIHozCOVxyO6iKh0MCNqGq7moczUXtP5gf4lDTqifNFNNWcivM699q7oTduWMhxAVRCyNj1BBIBSlm9C1684FFBXxlq1feR6pN2IeehsAc3+E9rpA2JJoJ0eQI4wcsWekk7e4jk8AKWPx51sxxMD/CwexQvM/NDHXXhIknYXqofXGpTzgQqfNmYQ9pTMq898fKMNt4FlXNoBUQJ8Kddv3YDZb82BxNido38I3HUTPFbVfg9nwXk24KAqEqBuIfGEr66nkhqv4dZk2Nw/kR9qb7uDPbU5NrGqIdTdegtpCf7+ARTSvSkZo1OYcW8/sXR+rEXjdHa3TyLT43OYVEZaJa78iZk2CF5OmOZJS3kXzpVS98N41EWEyj76sQIrcD+tZEjH6cVBvIJLAAzx5t10lmXz0JoSdT+znJ5kvtMyKnWV8CStz8HqkvAMlPPN6DQ6dOw1nejksYn6xTKxFIeAvxzExCEAAYkoC0pCmwZRp4tOjAbYPaN+AJsFmOcWm4je3hJkblEI6qcwkfpiG/aTPHwfwQ+7MD3J5IotWRal2tl2hG12nGJCRHg00D0pi5ByfWf2oOoSdoqWMvOm6jYFn6b0qwzB5Q047VaGB7DccNvUFOYzGS5cPUrOD+O7bPKbmv8jZYN0udiKk2chJkElAshgDNEThtZmi6Bq0mmfCCLMUXp/aa2eZ2nNr/NuLbf17FG8l2sDmvQjRbc8yNIHoXjE0giJmAKAArO+bygBiPJ0bNDfbbI3x7cgtXhpdwdeMydobbIWX1LMFasGPe1jKjcnaI3ekedmcH2JsfYNJMMPeNOltF6D08Wi90mTpgiUgmVzixh81uXhIa9eT3HsjCJ3PcGREQNHsPUEoWH0vhChVcpVr2IUKQ3mNqt6ehQNPsjOzp2Lb0nZh6wwt/LpuZ94NMAgqvqb+zepZknonnXzzPQrch3KOIySgC25/mBIQ5AYkCu4xkm4b4LO88VXvDfz655sJIwUGT8EjR0yAQOxuRQ6F2auMbHLYT3J7t4vXJLq5tXEFZlBhBZsmdhUZghVRmreRb7E72cGe2jzuzXZle3cxQ+1qz/CQEZnP6W0319ZY1A6vm04+6iM292oxhWIYf9B3Jw/A6W9D4M0wisqdHkWY9exRUJFy/8FBNgPU/KwwjxURkUpDM8LQJSvH9pITAMa3RWhHf2wJxRP/k/RFBJgGoCeDbHgHMGiMA38svT19uADM8h4GpRxTp6G9ZaqnKH14bW0fQsUg7vZkRNqnI6t4tE0n0Vi8mvYA0UQaxXFkvgkEEkNPzd5h2M9ye7+GVo1vYGW4BAC6NdzAqq1DB6EFhiT+ztpbRf7KP16d3sDvbx978EIfNBPNuLs9d7yGdDmy+GFO+nKrqHpZZGRUzJqnQ1PfOJ8JjZrsevzzi2pPtj9QhwLM4eVbJ34F6M/8KcknREBdmdZauWNJWwlvk+Jc0Pb4rcwwuP9vkfu4DmQQguQC9NOBmLsknOr1XNfqopq8QbGOAkACkiKOtOp5YBB4cjw12H1tn0/Mm89mD6qsjfOqXYB3OAgFYHzejFelcdOoRQSEpRQIWG7pjiRi8OrmFYTFA3dV4rJ3j8mgH26NNVKgemAhEA6hxODvE7lQI4PXprob/pph2M51V6XvmkUecYZk+W4YDr+j28m6iKh3eA8d7Dze+QmrERI/MIEQgz8pF7g5EWlCBgStDube07JuN/KHikCZjmXaQttlzJPq0pJkjzWWgfhAzxYNqaWtPAlJHrpHCH61MRmm0oMRKpd1zELqeWZCqoqkamXS4aAsiCK1fNaprJ7DPCzuxpNOn9v/C4fGaLgqC/l3AwpTqGFN90pHDzNd4bXYHLXchRv/49k0Aj2Fn7FDR4L46XQwBNjiaT7CrDsDb013szvZlmnU3D95/nzx/I4GUYGOSThQoy6APDj9a+K2fVxZXITvnokllTr1o91ttgcJFwa+KgfyUFQZuoNO3y0QjcNrWBQ3MNEGKGo9X0rf6CPF+aaGQadL8EILMPoH7gtUAkAITdQj/pSG71JNsXSNm/hnM1l5t7RsYNqJZgo/NZouOQquAk0YhooYQWhDsx6RxiR6MZefRMZ8NktpOYTZcyx32mkPMfYPDZoJZV6PzHsOyQlVWUhuPihVnWnHfSgCS+jvB7nQfd6Z7uDPbw159iIPmSHIvWGL/vcKevZwJa6s+DSW2Xrw/UfVtKnA/fNrXl4nCP7G94bmLv9GuYTb9wJXyHNwAo8EQw3KIYVGhKgdSDq4oUagGYOnDlLQtzVfovQNiAEXUBlTDNL/AKuGP96GhwwfQBtaWBMwPMG/mmKv9H0blZKANo3vyT9/uTj3/yV7L6eb42Wx8m9TTJcxvNGAC4JPzxKsumxuG3vaFfpCODInfKoS4gioRvN2SZNwww3eSNk0gVG6AS6MdbA42MNLpx/cadaza0ryda7GVA9ya3MGd2R525wehClLtxQHbcpqD4UQwknBr6llPOdBU5n78/y4qciL8MTlowZRTAingQg3AYVlhWA4xKiuMyiHGg1EgxoErg60f6xCa4N9bOOOAw/o6eMHvEM0bXnAARO0nk8CJIOEpL4UntOSUheKWD0YU6J7Ac/Bem1YQbTmrBKQTYOyzxgdEtU0djkIINuKxdYDwuUc3AJJOFWLY2okXPMn2CdBRQrWESAbLTi8jAgB6jw32mgOMpkNcOdrBVrWBzeEGnCswuEfosGOPWTvD/uwQt47u4PZUTIADLbU2s1mNGgZc8PEHdTydyLMYO2cGyCXkkNrZx8TMU7NheZ+NqiL8lRuI8BeVVHauRhiXI1TlAMNSJl2VWil4ca2IB8G9iMPuKbUCT3O9tSQBywjsOispbaGopGMshgLRN89NiGXU8ugFAJO8AJ8Ie7T5oqrPDC1oyb3zRqEXL3Q4T3jzJvB94mIk2YOpchDuJ3rDekLAdgyDSdKYU9Wy9g32m0O8NrmN7WoTO6Mt7fgbx2YUdl2HuqsDAbx6dAuvT3exO9+Xef8+pv96HfXCCBc0MlaNJSUuBDs/RUoUzKwpxHJPPeJIRn6vJb2sSKgVCC1IajKOyiHG5QjjgfxsDMYYDioMNVJiKv+DjsIPgqW05FNi7UjARmurKOsTlb3nYeOech8+p84bE2WLHCAR8qD2J2NaqgXYfiCJAACJfZqQiezQ/WYrEvp9zgihb9+G+wYHcqPF75rHXGsTkI6szibikNzTUTvFa7M7GB+NsD3cwrAcoioruBVOQtOAjuqpRAEmd3Breht3Zvs4aiUVWDIBfXS2pk9cn4cn8ckzrOSW3KcV7LKQm1shGMGBSyGGom1jLeYd1WlHstjLwImDb1hWGGs5dxF+qb1QhVE/+gje6Fg7EgBsVGckkTcAyyNLCAtyFP6Ol0d8IxLTKCy33Y7tpQTb98M5E1vUTN/E0cfpfj2mpwfqn+opSwwA0oq4lBxkB6p5sDiSQsnAIgnB3pR02ca3OGgOcWt6B1cnl7Ez2tZiJCWKBRW88x2mzUyqLakTcH9+hEk7EycsS70/e45p2C4lP9IsTVKBh08mBJkJkOgJ6bNKZ90xayYgadXfQBqyvsPQVTLal0OMBiNslCOMqzE2BmOMBkNU5SCsG/BmEPwU60kCqQMwqJqJ59ZbBMDWo/NRjQ8/0YMsv2yEt2JWOvanJoEKvZQo60IWoRGMdeCeCaFMYPUFAOn8S/e0kB0ITkwF8yqrGSGj/ApbWJNQFu1q3QsPj2k7w259gNdnd3BleglXxpcwHgxRuAoAQuHPiWkAR3fw2vSOrrFwJJOBONZeSPUcZ8qYwnsf2lHo5CAZ061F1I8IIPpOUkIMWhBEy5GFQWQNgarQEX8wxtZwE5vVBjZU9R+WVWLvn0225EXEWpLAIiyitpgSLPt44TcQh+N4cLAJe3Z335lnc8CJoDMLdfRKfQgQDcUKYZqqkmoLRltLgp+0JVUXbIxMfOthK5Dct/KE699COCcDaNlj3s2xNz/E/vxQ51ZsytwCBuquxbSZYm96gNcnd/Da5LYUXa0PxQkYErBSvwiH0dni6PIYVRXS0Tuq7pJws6QNpe+M++8G+n4tqacqBhgVFUblCFvDTWxXm9gebmKjGmNUDiXG/yYXfsOakgAvdHIOHRF9B/sx345KpxUOCXAq4OTg2MF5jwIFvFa8HbgBOj+QEuGaGNO4Fq3a0MReKw87MCURhOAvI1DivT8mYhiw7ERa7VQidSS6lMjMJjDhU59B4xtMmin2Zwc4mB1iZ7SFqpR7Oqon2J3u4fZkF7cmEg3Yr6UCU20+GL2i1UkMT5MZ3pb60Aw5U+PtPgKRJtrbynekztVCIyEFFRgWAwyLIcbq7NuoxtisNrBVbWCj2sBGNUJVVME5+GYXfsOaksDCgM39ENyin4BgySKx8oyz2WoEFOwSNTTx6rMtf2VJQR62Mo3Vzmu5xdzLNN65lzJljW/QsKyLB4cwlZYZtjodCElYcCHMB0RPeXq/CXf0j0Va7XZ1x5eKR3Kmlj1m3Qx79QF2Z/vYmW3JVF72ONB0YMsEPGymOhegS5Ks9D/z/qvAggCHTrWk/grL4X6S5kUTrh8MFaWBYbX+B8UAo2KIrcEYmwMR+s1qAxvVGGMd+YflQFdmWh/hN6wdCcRKQKrOJ6p4cBaGsUqEoigK+I7BzoNZZn6xK3sOrSIsNd13HpnjMM15N3TqG5h3dfiZtjWm7QzTTlYSmnVzTP08LD8maxXy8uQVJFYwxS3xvgGQrnRDcWor2BxsNq+OoioUtKIYpzcTZNpJ8s+tyW2MB8Mg3PvzA9yZ7mFvfhAmA4U2Iz7rzkgxbpVnwkJyhb6ndPpt8taOf7/hruWdDF2FrcEGLg23cXkkOQ7bwy2Mq5HG+EtdQXj9hN+wdiQA4Bi7PwkEWnaajkQlACqkUw3cIDiazMYsNGlmoMtNW+ZYSgRQcklHNHMIyio5Nea6SOakmWLS6uKl7QTTdoZJJ8VNJp1McZ77Gi3ahFxWdeAVYQR1F6QJKWEUTUMCyb4oHHofxGh8h6NuituzXVTFQBbXpAKHzQR79SEOLRFITR5mHwjWtKIO5vpUB6jeSkGAJ4BQJIZX1GRChR5a+Ftv0EEciVUxwFa1gavjy7g2vozL450Q8jOb/2HG9y8q1pIEUkE/Rj8OKj85iTBXZCWooppqAl+6QkJIrgwjS1lE1XJxEohdMp0ttrScVjvHpJ5qReMZjnRNg935PnbnB9it93HYTkTQ0MpI78hiin1H5dIt2sZlJyGSrb02IzF3mNFBVjt6fbYPZmDWzjEoBqg7qUcwScqCdfA6V8LIUMnAd/AUCdKuzZog1PfrQ4nTy3yCVCfouTEYzhUYFhUuDbdwZXQZN7eu48r4EnZGW8Hbv+6Cn+Iky5B9BMBfA/AqM/9Z3fYzAP47AK/pYT/NzJ/SfT8F4P0AOgB/l5n/9Tm0+0zA2nNIhZvI95JmHAFOJ8rYop6V1uW3ueKyym8RRn4r/uiOqfi6mNIak4TMdGCd2SgVd21y06yd46ieYG9+gDuzPbw2uY3bs13crveUDGopExauk9jMyXX72YQmbImwWwlj9Akg5BdSzI+ofSPFSuEx9w2GRQUihHUAWhafR8itIAt5ItRVSgmg/3K0RkC0SRbenYetGgRINKWAvJdRUWGn2sK18RXc2LyG65tXsDXcDE6/TAB9nEQT+OcA/imAjy1s/0Vm/ifpBiL6LgDvBfBnALwFwG8T0Z9mDkXhLwRCfJkoEVyPgkiW91Jnv6O4pLfNFpMR3wQ+WXQi6Vwn7WTH5oZrCGs8GIWJTq2m4Er58yPcnO7i1uQ2Xjm6hVuzXdyud3HQTlB3TUhgNuFPVd5Fn7rVHBBLgKLZgsRvEM6jK+jqGTwY026OljvM/ByjYoTKDQAgVAJOcyDCZCi2WgHcI4AQylO/hLQ77lN3hig7ak4Vyf7CFdgoRrg83MH1jat4bOsarowvYXu0hYEbnGvB1DcyTrIW4e8S0VMnPN8zAD7OzHMAf0xELwJ4F4D/58GbeLYgol5lF88ehdrVUhFGPzsXikMMy6EkjpR9VfK8MseCr0H/HnAJLgHPEtO+NN7BlfElsXOHO7h8dAvfnmzg1vwOduuD4Iwzj7s5OHvgJCpgjj/1F7Da/SnB2XccnNTeIwsXSjSj9jVq32KjGKF0hWVdx3TqJD26l6yljTTCMpMrRDIWzRm2JCyLzsi7HLoK43KIy8MdPLZ5FTc2r+Ha5hVsVrI0+5sty+8scRqfwAeJ6G8CeAHATzLzHQBPAPi95Jhv6bYLA/Pml0UB5ir83WkBSxttxNk3kKIRKvzFI7IlrbS1qbuW276haa07wy1sVZvYnmzilckt7NaxUKfNSFx0CopvAwief6YkNCoHpzpDkFfEtF3PMvmp4zaYIg4OQwxAoF5GIGAzEmOWZIRcL/XSyKidhjgXw6BCUhWV2CzH2K62sDPcwrXxZVzbuIIrG5ewVW0E30zG8XhQEvhlAP8I8vb+EYCfB/Df3s8JiOhZAM8CwJNPPvmAzXgwOHKS1FOKVlAWpXbK6MCzPPGyKC/URBEjhJFGKipdTHSz2hAyGGzg20ev4dbsDvabI5mnn2TnyegZw24xOpAOvUm4MQ26UT85ieFDElTrOxAIpStBXiIpaV6gKAS6PHgaLlw0B+LV+k5Jc66G/AxCSaV4/0fi/b8yvoTLox3sjLYwrsYYuDLb/yfAA5EAM79in4noVwD8K/3zJQBvSw59q25bdY7nADwHAE8//fTdQr9nDsvyIydZaQUXoXPHsJi70E4k02aIhjL7rRQfwqgcYVQMZVLPtMR+e4hZO+9l5pnwW3ZgTKsF2KPniFukiNThCAY6XbfAfAmc+ADAMp03mQWBJCWrnztBpgtE8lmVE8hgFChQuhIbg5Gq/9dwY/MaLo+2sVFtYFhWZ1YZeR3wQCRARI8z88v6548C+LJ+fh7AvySiX4A4Bt8B4HOnbuU5IJ0k49gt7XujwGLdW86p/6LCqKy0ym2BYuawh33U3IaiHUZyABbs7ejniHPuLZiIZG6EaAxMDPYS8wck+ck7UfetbiHUZIiOQLtU/Gx+idXhzAhz/g1cia1yA1fMAaj2/4aO/uuc+PMgOEmI8NcA/CCA60T0LQD/EMAPEtE7Ia/tGwD+NgAw81eI6JMAvgqgBfCBixYZWIU3eodxoSCGZioS9YqXeHgcNlM0aELpspAHgLhoSU8Gg2a0OsQY5vtDJhWBGaWTkGDhC63fHzMEbfp0WDwsqPexHYvhyHTSkGkvAyqwUY5xZXQJ18dXcWPjCi6Pd7BRjVE9wpWU38g4SXTgx1Zs/vBdjv9ZAD97mkZlPBgKV2BUDkFj0pFXwGA47OKwnUg5b5sOnfhAwsgNDoukLo7KvfRdIngf1X/PHrVvMaAWJZWAFiEV0kGYR7HoB7DzhvMvluFOwpSOCKNiiCvVDr5j8zq+Y+sxXN+6qjkAmQAeFGuZMfhmhnMOQ1TYGW2Lw05LqFlobgpdVg1BqYc5BCjMojwmfwFac988fZAkHSsQCt9gSCVa18HpTErRMnzfObmEe2tiBMKASmwNNnB1fAk3Nq7h2uZlbA+3MgGcEpkE3oRwzmE0GOIKLoE9h0VUOvagmjABAN/GAqnge8phr2BnklRk5oXnDp5dKBnOAIiXxf54Ioj+yOUkJcLAlRiXMRHomq6TKBmcJyt9nrEamQTepChcgdFgiJ3xNq63srCKTehpfQtAbPlQ4Rjij2diDREIWF2JjqwakY24FBKLOp0M5FhqBoZZkzaBKkQcjiMAWUo8Bh04BCsdpM7/RjHGpWpbQoGjS9gcbmBYZg3gLJBJ4E2MwhXYGIxwdeMS5u0cR80Uddeg5RZoCPANOk2/lRJmInj+LmoB2T8UzQFbYrxwFGYKhunZWm41lX9e0BB6XgLL1gKjIJkHsFVu4OpoB49tXJfJQBuXsDEYP7LkrTcbMgm8yVEWJTaqMS6Nd3B1fohZO8O8q0VYW9bVjT184oUHTFCtZDeSUTpaDj4IuuxZzAEUIjhhQ5nDhCG5qkPlBtgebOL66Apubl7DY5vXcX3zKraHmzkV+AyRSeBNDiKprLM93MKNzWtouhaNb+HBYcn12rcgTZlm0vkBNj7HgTmsWMQ6J8DKrqel1cN10w+6qz+F27bJCaVIiswJIAJKDQVeG13G41s38Jbtm7i6cRmXRtuaDJT9AGeFTAJrgMIV2KhGuDzeQetb1L4JsxPNsdd4QAyBJDSYxOn7WFDmQ4WgGG0Qs0EiDpKLcHeVgDU0KTMzC1RugI3EEXh94wp2xtkReB7IJLAGIJKc/q3hJhis5b58IAPfeDBJdlcYuQkAip6TcCG5ML2CbjPSYOWPqF0ct4ainStqDoSSClSFRAO2qg1sDTdCMlAmgLNHJoE1gXMOw0EFYAtt16LuakybGequCeYBvGT0mYdQfsnCI32pN6HXlYMTP4L3HlyIieBYKwCl5b+TSktpxSVmBjmg0ElIlasw1CIuUgsgOwHPC5kE1giOHKqywvZoC7N2jgNdEcgKgwRHHgPeWTkwqdpr6r4lC0lir80qUJDmDuifMfQYowVEmqZsNQXsQJ3OXBQOlSsxKoYYFXHZr0wA54dMAmuGwjkMyyG2h1u4PNrBUT3BUSMViWRZMMCTD1XGPMmnmB1AljmAkhwKTfO17EPJTOzAPNAwYiQAoG8WxDKPjAJOVjkm8QVsVVIheHu4idFgGCZKZZw9MgmsIQpXYFyNsTPawkG9jb36EFMNHbZe5nuZuDmKk3oLrTQEAtgxCl9Iue4kjMikDkKKQt+fLRDDiqwTFmxh0ZGrsD3YxJXhJdwYS3WgK+PLGA/GWRs4R2QSWEM4Ii3HvYlLw23sVQdJ/oBHw7LQiZT6jNMJKWQNAsxaaJWKqBEkI3VU/RfiAuJ6UC6xOgZiAuxUW7i5cR1v2XoM37F1A9c3r2JHQ4I5J+D8kElgDWF1FsfVGJdG27gyl4zCaTuX7MGuRkdWEyAWIrFKyprPi0EgghIFtZBSLSu89xxLivQjDKx1HR2GxRBXhpfw+OYNPLF9E9c3ZXZgzgk4f2QSWFPI3IIKl8bbmLVziRa0M6kQDA/4TpYeS9dMsDJrxCBPaKjAAKWUZKcymAz2nxEHg6H1W2M2gaYHO5LJQZvlGNdGl3Bz6zoe276O7eGWFAjJFYLPHZkE1hhCBCPsjLa0lPkhpu0cTdcBVMPL6qpy8II5AGpRUqFVmQsMtLhoRSWGbhDq+1mJ8s55sLfMQlt1GAAIFQ1CsdDt4RY2BuNMAA8RmQTWGI6kJNmGOgl3ZtuqDbRwLenyYQj1B/vVh6WacEUDVG4AZqn+OyqGGLoKlRuAyKFDh84XUnMALRhOy4151QJ0kpAuFLoxGGNQDB6YAFLN5X72rTMyCaw5SNXxYTmUdfrqEWZdLWXDtOaAmQKaDAhAPPqeGZWbY8QViIVUhm4Q4vtCFB1adKg94Byh5Q6wCkIASipROVkqfFQOtdS41EBI2wikRU8lKckvCHWamBQrRIsTIyyComRl98QLiUz3oodwLY7EeGwRlrQGwwVGJoE3AUIYLi3GofH8dC2BtKw6c1w/AEYEuoT3wA1QUgOQRAiwqrMTMHAelask49B5SfYhqS8ovx3IEzyxlCDnOEk51jHgkGk4b2ocziehupEJrHO24jOFZdrqtta6CKQ5BHKuzovzQZaNk5mGnZdFXxsvFZZsAVlHTgqr6GKphZNrIXGIggguuWnqmUVasZmg+RIuiWLI83ZakzFUd45nujAEkUngAmFphl06TXdhym46x8dGOBMoW5vAtnkvMwY732l9QQ6CWjgH770sHOptYdQWja9Ra1my5b4qNQzTkuHsPVpmUCcxAkBGec9y7rlvZK6C92i4VY2A0XCHoatwZ7aHbx+9hta3GJZVOG9BshJUVQ7gSFaMsuXYmk6Ko5hAc6JBSNXlEQonJDBr55g2M3j2sqxcKWXZO5Z1HxmMMl1JWiMaDlKW3sKZTsOhlrwky9DLalbpYqemrbiwP34nLn+3UFQ9aCKyGtTDCotmEjhjLNqdvQw5LAq5qrYqmDZ6BIH2VsSTQ3kwz7HEN4HC9raTAqIAw5GMjPa91reodb5A0zXogj0uKxk5ONRtjVuTO3htclsXLjkMI2dYxFTvAiAURPBg1F2DaTvDYTtFwy2KzmFSTDHuRqicdK+ZbzDr5mHCUqe5CB4eBTm0XYOmq3HYTvCfDjZ1eThxH5a6LuOwkFwBD49ZW0uWo2/gABE+KvX5CAmMyiE2yjEGboDWt5g0M0y7KTwzhkWFUSkaT+dbzH0tGoI6OgFoSTYOsxoLJVZHUulo4GT1aae5ElVZYVRU4s8gmW/hTetwspitkdXi3wYXyMEWvLV1Ms9Xg8gkcErEEThsCeGvOJWekxV44ojdsUfXtZh3Ddqukbr9Ni3Xq9B7r6O4XxrNiSiM4iHtlzmMXF5XBmp9i1k3x6ytUXc1Wpbw37CoMB7IIqKt77A728erk9u4Vd/GUTPR0Rogp8uUJTkDpY5qDXeYdXNM2ilqbiTxpysxdFNUTkb02jeY+znmvtFCJFKOrEOHAg6zdoZJO8Wd+gDjYoiSinB/hU4rlmKislzcvJPzNdyGttjKjZ22WUybEQZKDkZCDMbAFahchdKppqLEWJADqTlgZGsqvjxTgOAwcBIStbUdZNbjQBas1agGK6EXOiNyqH6SghyqQtaGEB9I2VsPstA1MIdlhaqsgnZi+xz1NYqzQCaBEyKo3JbymozQcdUd2+5hI6ft71hUbRNi6Xwt5u0ck3qKudq4Hj44veQ7ra7355PvSkc3Vb/2jab8tnHVYIIuD9ai9R0aO0ZXCwagwlVh6AbwzJi2M+zW+9hvjzDzc7Rqw/eWA4PV/ZFMv07V/drX6NDBwaFlKVxS0FyeAaQcud0fENOKOzDmHmA+QsMNDtsSheYYkKreJYmwkZZCS1c8Ji2CYi3U0iQoSUbgQhY3FwLV+3ZqYsQ1FaM/Jdyrlkp3AJCo7o4IBYpgEsh6D1IJuSwGKNUZaYTpSJZLq4oKA13PcuiEMMblKIRS7dyOnK6CPcJ4MNTl1F2PHIalaByppnAaUnjTkcD9hohWjuSyQ/8Swe68CJSN1jaK2yjdU9t9F9JlvY7mrW9DVR+p/S+26Fzt23lXB/Xbs5ToFpW0Q5toCFbE0+xxzxxWBm69qNh2Tx0Y3nfqofdaR8DaxmEUK0m6QeMbzLoaMxZC6RAyfPoCkz5TJa1OFyS1VYrSEuOeGcTqPOPwxfAeCpKRrfMMIg92LJmH3KJjkuxFamCvxeYnANCsRr8UwrT1Fdwx79t3HrYcnZxI26QUF0uoAY7FO2B/C3UJAdsqyh08yDeaPh1nXhMRCogA26guTtgKVSEjvc3JMP+DRWvGarIUzklCVjHARjXCxmCM8WAkZlBRBkIy5+n9ksEbhgTCLLTg3Y4dTI/obQ+LWCRCHtTZxF63UdoEnYOTLaLzHepOHGVNJ8LWdm0YZSWezjp6d8GeNHu/850IqnqoGx0RjVjm7Ry1LQqC1A8g5wpVgQlKMH1noIyObSz97XV7Qhryd7w3+16DFgW1ogLrfw4yp98trBUovzjYu/boHcUMwUJtaPuKaSWhsIhNT7TTEqEkB0Kh33W9kRF2jiRfwRpDOsMxutPEdAEoyXGKnnzSnOfU/+p0ApTmLanmE0nAzu0gKdMSBSjgSMTWvm8p1aRO07DMumoKoW+qNlPrjM3WuxDdIDg4T2hJ+lXd1koSRYhozNs55oMa08FMTIZigLIYYFiKVlcWxX1rBydZhuxtAD4G4Ka+vueY+ZeI6CqATwB4CrIU2XuY+Q7JVX8JwLsBTAD8ODN/4Z4tOQbe+ziiLnR877vekuJpcUyzi63Der+8+IWNuk3Xqle8C9ewzmYhqXk7x7xr1H7sUHdN+E5w7kG1hiB4iI47tds7tjUATJhkhBa138QTYfviqG+rANv57T7iNF4dKdnU0TgyiUCaORPz+QEOdn9BhRICw3MiCjYZyAtNWOhQqg9xOKawMFky0ksb0cs+RDiz1BMMi8RSkhdAOk7bDMXeV9P1kKChvMBUKgDyh1sQCPZJP1mxbmEM5ck5pOyZC8u9GVmYwzCQgN1b0CgQogAFORQk/gLnkinY+v14/8J09v4BgJU4qSPMMAer9jdr5sE0aMoKw0EbHI5BM8C9V9Q+iSbQAvhJZv4CEW0D+DwRfRrAjwP4DDP/HBF9CMCHAPx9AD8CWYj0HQC+D7KM+fed4DoBwcbWUbo36uooawLYJSq6Zx86n3l5mePiG7zQBxkIITEb3c3pJsdJxxdNQCvw6MhstrqN2jaSyGQZS2QRoey4Cw663tLcibYQQRY2EHtXV/KJMX7qdX+zZR07kAkZS00Au2Hn1NHGCFoAk++NoOLxd7A6g549PLle7gGDwY5A7BOFWZNmyIUagelir+nzjvcX3jQcip7fIY2nUxz6YV9a8pTbXSTflypFQn208B9gQiXP0gXeSLMBlhdmjSN+THSycKEzzYApZBGFe4FLHHoOJZWgHjFY9CESgkUkQrQA0fYX/4YPa0dwG1eB7thj4BoMygEGWpWpLEoh+LtoBCdZi/BlAC/r5wMi+hqAJwA8A+AH9bCPAvi3EBJ4BsDHWCTp94joMvVXMT4WXnPLzYFmS2jVXY15W4fR1wigJ1hKDvIS4yhgNnkQtMR2TEfuRTXeDmaOBNOpyYAFVTuMVEEGY2KO5zTsl9iK4V+J63csVqcHq1opqyWzY3X2eVVbF7u0HCzEIwkvokooESRwmrCjZ0eiHyCuR1gAJCFEM0+s88Hsb0T1PnVomTqcqtPxXu0Pl4y0qSpPCRH0nxCCbLkeoSyLt3zi4HhI2xNdh6m9njo9bVvah4IwmxMOiRMPLoYP7RknUQSXfM9U+vg9IwHVJpLtjmJ4sNAchNKltn8/dOh1oCSGlHYzv1TQBhPfxwrcl0+AiJ4C8N0APgvgZiLY34aYC4AQxDeTr31Lt92VBKLgd0Hwm65B3TaYtXPM2zp4wDs1A4L6rk6vnt2P2NH8wuiOsIdDsg2AEGfvO744CHpUwe0aic2L1CecFuOwpcBFyLSbJmQQt8dvxONEJVXRZ1V5SYxsU49NtVVNFI4ITNQP69mIZuXEVXVJVWwRFgaxgycOIywIgcR8InJe/7LEoyDEum1VcVFy4hxcUsFV2HoPP7SZIhuobUOhaZYabCN4v4ZBfOYUyIzCvQKUCLB1mfSdODiQi/F7e+d2j4nhEMjbohoOLuQS2ApOhar8BTkUGgdJt/fMB1XpjSjS372kJUtwgpi9HRHIi7baegfnHcq7WAQnJgEi2gLw6wB+gpn3FzyuTETLb/zu53sWwLMA8OSTT0rxy7ZB00ooq+4a1G0tMeFWYtzztkbHqfqv7i8bbU1EOfltL6o/BAe7ODgUgYXf/e3a6DjiMMOT0wCUHW9JIuh3NhZxs9x0E04K2oONthTW7zOBCAJrnVlVfxsd5Xe6+jv3HW/9cTgSDKXtjucGSDPlPFhVdejoypCyo2wqt549qsQmHOpJJw5OsuS9L7UpVb+RkIcdaam3vfZStPXjsybVlhLnH9l2F67VJ754biTnsevLNeLk6GD7IxKUHWfvqLBtYTSPv2HPK4z6aR5Cqj3EHIRCowoxfTqeM2Qe6n2k8x9CBqhmVh6HE5EAEQ0gBPCrzPwbuvkVU/OJ6HEAr+r2lwC8Lfn6W3VbD8z8HIDnAOB7v/d7ue06NG0jtrf+Fju86YXV2q4LNpCex9rYG2M56uZx2DDpIMRQlb1SioeaoESSECFIlVzxc3HoTfF4sTO9aSUcOxaxjfZI2ho7vAPBkyjqfmkU5d4vAgGu7+m2/azXcGrTJ88c8SlEMyA+iUhOYFPv415PZppAfQqsE4eK0ClTAXfx8SLY3Jymw3J41r1nS2nbTLCTNuozsglC0o7oWLTHlGpI6LUrvnOkz8CerS7NHvwCiETlEtNIWxkU7fRaPUENugMlRJmYMkY0RKGqciCIhEgsZ8K2ueS4Qn0O5my05+c9wzu/UisznCQ6QAA+DOBrzPwLya7nAbwPwM/p799Ktn+QiD4OcQjuncQfYCq+2eAW4kpHBbtpGa3knRWaXWaONtJ9oDgKmu1naj+rZC6OSKpMA4jCj+RcaZiyL8i9JxacA8v75OxdsL9T2onfT0eyVFuJ7Vp97qCqhqWC4i2EZJhwbEKYUT9QIePe+cO32IMc6fM2x1l0kC2mF5uQ9NsYC5MGkwamltvomo7IUtR06SkTwigdtI3QP9S3krx/x0tvNbnjqGUEbS0hgPCbxRfS07TCACMHmBMvTBxKrmBbbLKRaU0i7HHS1WLacKox0AI5pGST+jiCaaXeYO/7/qEUJ9EE/gKAvwHgD4noi7rtpyHC/0kiej+APwHwHt33KUh48EVIiPBvneAavQdKzqlXPN5UcJy4AuxV8U7tfPZB/syhk6qO9sBtdE7Gx3DxtJzWsnDGESOwKkX1/XimTQwLu24y4iwfh6VOlp56FfFEoVLh0JGTgaXlwUxlTM/VJ0M61pwIz89UdmcW+XIYyoQ6fNvuPQhvFBy7ThDA0EajWyy0kMLoml4rbYFURcLSawxCrQRifcV2UviCaoBAiCBEFrBzYBlEYftim1PCibkF0eSx/t77bN8K2/oagO3rRxFC87XVvNRnUpwkOvDvFu4nxQ+tOJ4BfOBe512EOTw8eRRUoKU2JKBEJqQQhhJvOsUbVCGWd2h2NRBesT4Ye8kEy/5CcBgt3MkqHkiEfcVO/R4pOYBVgHlxZLfr9k0PUomP42c6DumRRCDuwndkrwNZxh4AqDro4VFAw4vJqBq0X+5756Xr+6XnYaIZOxLbhaLQLnSRcFYjjMS0MHXb2mpnSoXKzhlrE/avkYYSLQfJfDbx3ffZdIlIKI74i76U5GvhQ6AFXtwZz8rMKU/03mCqmfSvYYRpWkhCGandn/S5lBjk4dKC+Sb3FAao05gDDwUksWznOjg272gBR60yW5JYQarosSQCBSTDqAlT+kh6IzU5SGUb9I9J1f6gpyJh/+MfZB+pKr2o7MfRNxofqtauYGx52doYy0eAA5GPNj4nQhS4i6NNmyQP9c5txyfeZbZVg8IxUdCAmHxkt7nK0Rfv0z7HTzFKQRLLTzg1igEHp65dw9oXNQbT3FKKTEh1xbta9JGsaveS9pfQ8SKvcDAPjGRtO4dutTI+zwhhzB7xUf+g/ndNyBN1/25Y0Ebu1nMvBAkQdPZUUcb0W9+JJ9S3Mt10YdSRF22jGyGoAaZqO4ohw96LN7mOnT31OwCi/kk0Pe1KK4QoGSFTUyGY8YuCFzSZaIdHQWLtS7R0qb45ABRE6NipAzJOKy4gzrtUxZemxBHcBMSaZ7Y19LgQBE3WDbCvpw4ua0wcteJ1etfmqNJDBTeaeZF4Q4hQ2yWE5EMbaMHcWAXTpu5O1ZGWl02hdCyRTx4admQASqaLyVAMVkdz8hyZ4RbehbWRKd1GSTIP9Z8REjPhGOGn1PxIzLy0jYvtXcSFIAEAQgAAgJiI03KHzpXovE/sJCD1zix9CvdKak/HvauQCklIYgmCijBBhQEdiVV4iZdGosXzylfiub1PTBDVOHxCUosjmCk0jgBm6g0VBXwgAmsTg+GYemnDOuz0ngkZWSa6atRQbJuGXUNHjp0rvSchYLKvaLvj314fTlCsEtKQc/QjCr1nl27juGKyEU6as2Ch1vSbqROPmOMMxvBsCjjbllxH/ra+poFRF4b90C+chkA9CQHbxKZIifo29XFbkZKgQfRI1IYUffHpkJf4COx59wenqK+YgzT6FxZ8MytwYUjAOYeSi8CIFDq35d9LhiCpKmyFG9LObl71IMuhB9gGo5l0dIxY0Op652DLDATCiHAc4uuPRBRURO4fY0QgbdJRPdEG4qjLQZhsj2gC1Nf5emFD/TbF5xJi+HotmwUXTRRNeebYDX1Cpul9x6m8+reRiGk0K9iRIe0I95h474ICFcUnPCN7LsSkWpr8F/ML5FzL70VJQhmVk61WO8jui5H2DAk7mkAjSUknJRwmJU4lXmK9jt6WvXeLRgWBpZ6IB/2BSJKGQrgvinYYBINTEGnW4nIUYSnZ6C6FWy8MCQBAURQgT6BS0y/JAURhim7I2OsYrQPYMzpQFO6k84fOk3jyASy85kUwpKJNZILj7MsUqTocOiXL6r4dxxx96wvp2UJ+Q9p5k/sIo5qRR7gfLB8f1L/4TfMXgPpq6ZI3f8V9rhJI65A+ZSReQaopiSU8FTq+zYoJzbYOL/+G8PDC+0gTh3rtt+295xMFDkk7wuia3Lcla6Uh2Sh88X6ikzPRppJrxBwEShzbUUBLDQOWrkDhSik71ssIlFJkUu9ABDmkDQehtvkIRW9eQtHLIRDzunCREI7DhSIBwISfwu/UNrJc6toVMi0XLZzl9sODwiQh66AUWNhsRdKRx2YKEghMLqgBQXkiySsg0kQUdolw2gQVLI08Rj5cyHxzmzLc+U5q74PBPuZB2PTjlOi8k9Gm08IWInwmMDa66POCC+p/ahoxiQaV2u/p6K5PCaai271IjoWcz+YfxpEsCpDN07cRnRKBExU/OhsNQfhSs4Gpp6Gkz7BPmXLyEm5JXYu2MKIfSLcvzSBcegapx8QKoVJP2BcddADiaOwKyRA0QYel/JZJ3n8cjUuyugIi7KHAiYvFUwoXhd8lI3pKBjYTMVQdoqI3O9GIIc1EPA4XjgSAyKIDLSlVKKtV5QCzppb5912jcwwanXcfNYW0jBfAaldbCIyDmpY6ToA4Zzzk1yMVuH5nTk0M667xqP4EIpsNKeXCYuEPDw6TpsKciGQqsqVImz0Z1EtKKxpxGL2izavPIOngBHO+IWntMlL1255N6geIyTSpMsvBtk/z2qN3Pz65gly0CRKkefj2RNNR30ZlS71NLOiec4xZTZ1A6omDTNu6nI1pKn//0ZjmE6MT/efj4IIgWxKUtdElQl/YAi2uTNTzOIqbsPeSf3RkJ6JACmESUlJ9OZAyRSKyZ0egE63fcCFJAICyG4FI1aKi0AqyTZhXIKnFdRhpF6vuRiU2qqXBPke/5HZI71xSz2MvNuEPzrW0vXZ0T6tP28K9Kc9W6joKvA9EYBOjOt8FJylzrKlgdfoYsRbeYjlxtu/12mg+isQMCbpD/Nfi53GkSTtSX1UO59UOF9Raq423eBzFGYfxWfWjK/b+0/QfIgqjnC1+GpxgSdvTjNNAFSFUGmeFRk0jdIFg86eaVshnAJJ3Id+Nwhqdb460ICniFOK+Wt/PCux9PwhzNCFMoBczBlMtOe2B1jfvGUJMcGFJwOBIZ3GFsktVUtmnkyIf3jSB/kxCMw1iZ1ns9MsdMxXvEKtGMvIZAfReQDxXVGI5aYv+qwS0VIBEzYMunR5tmg33tZeu18nlGh13qdIc2r5EhIl2TWoCRS2HwogaVFKKNihMOBaiLb1QFCh2burnwmt3DiNW2kfDM1vQQMyyMyIONjqisBi5x6ceU2RTUyeQRE+Q43tbRl+LsgHECJyguS3hufXPEvL3db+N/GlefyrYi880bVV6D2Hcuk9BvxsuPAkAUQBdIckehdah996HKrxWLaY3YQbKjNZZgNhhtHOtqrqyalRK24G7aALptdNzpDAhtpyCVGOIhGalxaPkWoUkIxEKHTNqAVbVJ4yEZA7CtNOnbey3rzei6zTVOHInzzbxv4nARtU5VU1TFTU1I46Dncc+c6Kmp+YHrRCexWcur7p/rX7/WH43C41JH0wgVQtXpveyaGalAmraSKpt2DF0zHceJt4QJJDCzASoQ6ws0hG3L4yrEjuSMwXn4H22YAVD3x2riMA0BTlPPI4hDsX+SBQFOQiF7QB6FZVSsVhMaFnRiHCOJT8Aok2+6j77z25RKY2jGZCW67o/3E1ITzsS3i3Ee+zx4VktcUtoU/j8iAT6QfCGI4EUfXXwgU5wpu05/jLL11nZbutkdynNcM/RSw5auu6JvrfYPjzaznw3jeHU577P++od/8aR7xPhDU0Cb1bcrYOeSDDuMUplZKTIC8BnZKw5MglkZKw5MglkZKw5MglkZKw5MglkZKw5MglkZKw5MglkZKw5MglkZKw5MglkZKw5MglkZKw5MglkZKw5MglkZKw57kkCRPQ2IvodIvoqEX2FiP6ebv8ZInqJiL6oP+9OvvNTRPQiEX2diP7qed5ARkbG6XCSWYQtgJ9k5i8Q0TaAzxPRp3XfLzLzP0kPJqLvAvBeAH8GwFsA/DYR/Wnur5+dkZFxQXBPTYCZX2bmL+jnAwBfA/DEXb7yDICPM/Ocmf8YsjDpu86isRkZGWeP+/IJENFTAL4bwGd10weJ6EtE9BEiuqLbngDwzeRr38LdSSMjI+MR4sQkQERbAH4dwE8w8z6AXwbwpwC8E8DLAH7+fi5MRM8S0QtE9MJrr712P1/NyMg4Q5yIBIhoACGAX2Xm3wAAZn6FmTuWapi/gqjyvwTgbcnX36rbemDm55j5aWZ++saNG6e5h4yMjFPgJNEBAvBhAF9j5l9Itj+eHPajAL6sn58H8F4iGhLR2wG8A8Dnzq7JGRkZZ4mTRAf+AoC/AeAPieiLuu2nAfwYEb0TUtbyGwD+NgAw81eI6JMAvgqJLHwgRwYyMi4u7kkCzPzvsLq+6qfu8p2fBfCzp2hXRkbGQ0LOGMzIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHNkEsjIWHOcZC3CERF9joj+gIi+QkT/k25/OxF9loheJKJPEFGl24f694u6/6lzvoeMjIxT4CSawBzAX2LmPw9ZhvyHiej7AfxjAL/IzP85gDsA3q/Hvx/AHd3+i3pcRkbGBcU9SYAFh/rnQH8YwF8C8H/o9o8C+Ov6+Rn9G7r/h3Rl44yMjAuIE/kEiKjQFYlfBfBpAP8RwC4zt3rItwA8oZ+fAPBNAND9ewCunWGbMzIyzhAnIgFm7pj5nQDeCuBdAP6L016YiJ4loheI6IXXXnvttKfLyMh4QNxXdICZdwH8DoD/EsBlIrKlzd8K4CX9/BKAtwGA7r8E4PUV53qOmZ9m5qdv3LjxYK3PyMg4NU4SHbhBRJf18xjAXwbwNQgZ/Nd62PsA/JZ+fl7/hu7/v5mZz7DNGRkZZ4jy3ofgcQAfJaICQhqfZOZ/RURfBfBxIvqfAfy/AD6sx38YwL8gohcB3Abw3nNod0ZGxhnhniTAzF8C8N0rtv8RxD+wuH0G4L85k9ZlZGScO3LGYEbGmiOTQEbGmiOTQEbGmiOTQEbGmiOTQEbGmiOTQEbGmiOTQEbGmiOTQEbGmoMuQkYvEb0G4AjArUfdFgDX8ejbcRHaAOR2LOKN3o7/jJmXJupcCBIAACJ6gZmfzu24GG3I7VifdmRzICNjzZFJICNjzXGRSOC5R90AxUVox0VoA5DbsYg3ZTsujE8gIyPj0eAiaQIZGRmPAI+cBIjoh4no67pOwYce8rW/QUR/SERfJKIXdNtVIvo0Ef0H/X3lHK77ESJ6lYi+nGxbeV0S/K/6fL5ERN9zzu3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            "text/plain": [
              "<Figure size 432x288 with 1 Axes>"
            ]
          },
          "metadata": {
            "needs_background": "light"
          },
          "output_type": "display_data"
        },
        {
          "name": "stdout",
          "output_type": "stream",
          "text": [
            "image\n"
          ]
        }
      ],
      "source": [
        "from PIL import Image\n",
        "img = Image.open(\"../assets/images/teedoc_logo.png\")\n",
        "from matplotlib import pyplot as plt\n",
        "print(\"image\")\n",
        "plt.figure()\n",
        "plt.imshow(img)\n",
        "plt.show()\n",
        "print(\"image\")"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": null,
      "metadata": {},
      "outputs": [],
      "source": []
    }
  ],
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      "pygments_lexer": "ipython3",
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}
